Operations Management and Information Systems Division, Nottingham University Business School, Nottingham NG8 1BB, UK.
Artif Intell Med. 2016 Mar;68:17-28. doi: 10.1016/j.artmed.2016.01.006. Epub 2016 Feb 9.
Radiotherapy treatment planning aims at delivering a sufficient radiation dose to cancerous tumour cells while sparing healthy organs in the tumour-surrounding area. It is a time-consuming trial-and-error process that requires the expertise of a group of medical experts including oncologists and medical physicists and can take from 2 to 3h to a few days. Our objective is to improve the performance of our previously built case-based reasoning (CBR) system for brain tumour radiotherapy treatment planning. In this system, a treatment plan for a new patient is retrieved from a case base containing patient cases treated in the past and their treatment plans. However, this system does not perform any adaptation, which is needed to account for any difference between the new and retrieved cases. Generally, the adaptation phase is considered to be intrinsically knowledge-intensive and domain-dependent. Therefore, an adaptation often requires a large amount of domain-specific knowledge, which can be difficult to acquire and often is not readily available. In this study, we investigate approaches to adaptation that do not require much domain knowledge, referred to as knowledge-light adaptation.
We developed two adaptation approaches: adaptation based on machine-learning tools and adaptation-guided retrieval. They were used to adapt the beam number and beam angles suggested in the retrieved case. Two machine-learning tools, neural networks and naive Bayes classifier, were used in the adaptation to learn how the difference in attribute values between the retrieved and new cases affects the output of these two cases. The adaptation-guided retrieval takes into consideration not only the similarity between the new and retrieved cases, but also how to adapt the retrieved case.
The research was carried out in collaboration with medical physicists at the Nottingham University Hospitals NHS Trust, City Hospital Campus, UK. All experiments were performed using real-world brain cancer patient cases treated with three-dimensional (3D)-conformal radiotherapy. Neural networks-based adaptation improved the success rate of the CBR system with no adaptation by 12%. However, naive Bayes classifier did not improve the current retrieval results as it did not consider the interplay among attributes. The adaptation-guided retrieval of the case for beam number improved the success rate of the CBR system by 29%. However, it did not demonstrate good performance for the beam angle adaptation. Its success rate was 29% versus 39% when no adaptation was performed.
The obtained empirical results demonstrate that the proposed adaptation methods improve the performance of the existing CBR system in recommending the number of beams to use. However, we also conclude that to be effective, the proposed adaptation of beam angles requires a large number of relevant cases in the case base.
放射治疗计划旨在向癌细胞提供足够的辐射剂量,同时保护肿瘤周围区域的健康器官。这是一个耗时的反复试验过程,需要一组医学专家的专业知识,包括肿瘤学家和医学物理学家,并且可能需要 2 到 3 小时到几天的时间。我们的目标是改进我们之前构建的基于案例推理(CBR)系统,以用于脑肿瘤放射治疗计划。在该系统中,新患者的治疗计划是从包含过去治疗过的患者病例及其治疗计划的病例库中检索到的。然而,该系统不执行任何适应,这是为了考虑新病例和检索病例之间的任何差异。通常,适应阶段被认为是内在的知识密集型和领域依赖型的。因此,适应通常需要大量特定于领域的知识,这可能很难获得,而且通常不容易获得。在这项研究中,我们研究了不需要大量领域知识的适应方法,称为知识轻适应。
我们开发了两种适应方法:基于机器学习工具的适应和适应引导的检索。它们用于适应检索病例中建议的射束数量和射束角度。两种机器学习工具,神经网络和朴素贝叶斯分类器,用于适应学习检索病例和新病例之间属性值差异如何影响这两个病例的输出。适应引导检索不仅考虑了新病例和检索病例之间的相似性,还考虑了如何适应检索病例。
该研究是与英国诺丁汉大学医院 NHS 信托基金城市医院校区的医学物理学家合作进行的。所有实验均使用三维(3D)适形放射治疗治疗的真实脑癌患者病例进行。基于神经网络的适应将无适应的 CBR 系统的成功率提高了 12%。然而,朴素贝叶斯分类器并没有改善当前的检索结果,因为它没有考虑属性之间的相互作用。用于射束数量的病例适应引导检索将 CBR 系统的成功率提高了 29%。然而,它在射束角度适应方面表现不佳。当没有适应时,其成功率为 29%,而不是 39%。
获得的经验结果表明,所提出的适应方法可提高现有 CBR 系统推荐使用的光束数量的性能。然而,我们还得出结论,为了有效,所提出的射束角度适应需要在病例库中具有大量相关病例。